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リテールバンキングにおける人工知能 (AI):テーマ別分析

Artificial Intelligence (AI) in Retail Banking - Thematic Research

発行 GlobalData 商品コード 657608
出版日 ページ情報 英文 41 Pages
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リテールバンキングにおける人工知能 (AI):テーマ別分析 Artificial Intelligence (AI) in Retail Banking - Thematic Research
出版日: 2018年06月11日 ページ情報: 英文 41 Pages
概要

当レポートでは、世界のリテールバンキング向け人工知能 (AI) の市場について分析し、現時点でのAIの普及状況や活用方法、今後のAIの普及・進歩の見通し、それに伴うリテールバンキング業界の変化の方向性、関連企業のスコアカード (業績・主導権などの評価付け) といった情報を取りまとめてお届けいたします。

市場参入企業

技術概略

  • 定義
  • 機械学習 (ML) の歴史
  • 深層学習 (DL) はどのようにして機能するのか?

市場動向

  • 技術動向
  • マクロ経済動向
  • リテールバンキングにおけるAIの活用状況

バリューチェーン

  • AIソフトウェアの10のカテゴリー

産業分析

  • 技術企業の観点
  • Webスケールの企業
  • 法人用ソフトウェアの企業
  • 専用のデータセットもまた重要である
  • AIとMLによるチップセット市場の変革
  • あらゆるAIエンジンの成功に不可欠な、2種類の重要なコンポーネント

リテールバンキング業界におけるAIの意義

  • リテールバンク向け提言
  • AIベンダーがリテールバンキング業界に売り込むための方法
  • ITベンダー向け提言
  • タイムライン
  • 市場規模・成長率の予測

企業分析

  • 上場済みの技術企業
  • 未上場の技術企業
  • リテールバンキング企業

付録:分析手法

目次
Product Code: GDRB-TR-S001

For six decades machine learning (ML) was poised to take off because members of the 'artificial intelligentsia' had already come up with the theoretical models that could make it work. The problem was that they were waiting for rich data sets and affordable 'accelerated computing' technology to ignite it.

These are now becoming more available, and amid a swirl of hype, ML - i.e., software that becomes smarter as it trains itself on large amounts of data - has gone mainstream, and within five years its deployment will be essential to the survival of companies of all shapes and sizes across all sectors.

For many investors, ML=AI; ML is an AI technology that allows machines to learn by using algorithms to interpret data from connected 'things' to predict outcomes and learn from successes and failures.

There are many other AI technologies - from image recognition to natural language processing (NLP), gesture control, context awareness, and predictive APIs - but ML is where most of the investment community's funding has flowed in recent years. It is also the technology most likely to allow machines to ultimately surpass the intelligence levels of humans.

Many companies, like Alphabet, have already become 'AI-first' companies, with machine learning at their core. At the same time, many ML techniques are getting commoditized by being open sourced and pre-packaged into developer toolkits that anyone can use.

Scope

This report is part of our ecosystem of thematic investment research reports, supported by our "thematic engine". About our Thematic Research Ecosystem -

  • GlobalData has developed a unique thematic methodology for valuing technology, media and telecom companies based on their relative strength in the big investment themes that are impacting their industry. Whilst most investment research is underpinned by backwards looking company valuation models, GlobalData's thematic methodology identifies which companies are best placed to succeed in a future filled with multiple disruptive threats. To do this, GlobalData tracks the performance of the top 600 technology, media and telecom stocks against the 50 most important themes driving their earnings, generating 30,000 thematic scores. The algorithms in GlobalData's "thematic engine" help to clearly identify the winners and losers within the TMT sector. Our 600 TMT stocks are categorised into 18 sectors. Each sector scorecard has a thematic screen, a risk screen and a valuation screen. Our thematic research ecosystem has a three-tiered reporting structure: single theme, multi-theme and sector scorecard. This report is a Multi-Theme report, covering all stocks, all sectors and all themes, giving readers a strong sense of how everything fits together and how conflicting themes might interact with one another.

Reasons to buy

  • Our thematic investment research product, supported by our thematic engine, is aimed at senior (C-Suite) executives in the corporate world as well as institutional investors.
  • Corporations: Helps CEOs in all industries understand the disruptive threats to their competitive landscape
  • Investors: Helps fund managers focus their time on the most interesting investment opportunities in global TMT.
  • Our unique differentiator, compared to all our rival thematic research houses, is that our thematic engine has a proven track record of predicting winners and losers.

Table of Contents

PLAYERS 3

TECHNOLOGY BRIEFING 4

  • Definitions 4
  • History of machine learning 4
  • How does deep learning work? 4

TRENDS 7

  • Technology trends 7
  • Macro-economic trends 9
  • Applications of AI in Retail Banking 10

VALUE CHAIN 12

  • Ten categories of AI software 13

INDUSTRY ANALYSIS 20

  • The tech sector's angle 20
  • The Webscale companies 20
  • Enterprise software players 21
  • Proprietary datasets are also important 21
  • AI and ML are transforming the chipset market 21
  • The two critical components of any successful AI engine 22

WHAT AI MEANS FOR RETAIL BANKS 24

  • Recommendations for retail banks 24
  • How AI vendors can sell into the retail banking sector 26
  • Recommendations for IT vendors 26
  • Timeline 28
  • Market size and growth forecasts 30

COMPANIES SECTION 31

  • Listed tech companies 31
  • Privately held tech companies 34
  • Retail banking companies 37

APPENDIX: OUR "THEMATIC" RESEARCH METHODOLOGY 40